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Dear Giampaolo
Cluster analysis is the task of grouping a set of objects (e.g.,
observations, policies, claims) in such a way that objects in the
same group (called a cluster) are more similar to each other than
to those in other groups. In contrast to simple segmentation (e.g.
by geographical location only), clustering uses several features to
differentiate among those groups. Potential applications are
manifold and centred around questions such as, for example:
- In which customer segments do we mainly
generate new business?
- Which typical customer should we have in
mind while designing new insurance products?
- How can we make use of granular
information, such as diagnose or treatment codes, for example,
while dealing with a limited number of observations or claims?
- How can we identify outliers in our
underwriting or claims process?
The web session shows how different algorithms can be used to
obtain a segmentation of insurance data. The methods covered range
from centroid-based (k-means, k-prototypes) to probabilistic
(Gaussian Mixture Models) and density-based (DBSCAN) approaches. We
demonstrate how the clustering results can be visualized and
evaluated. Moreover, it will be shown how the clustering results
can be used to identify outliers in the data set. We also cover
techniques that reduce the dimension of the data so that the
segments can be computed either on aggregated information or using
only a subset of the available information. The course puts an
emphasis on the practical application and therefore showcases all
concepts on an insurance data set.
Your early-bird registration fee is € 150.00 plus 19% VAT for
bookings by 25 March 2022. After this date, the fee will be €
205.00 plus 19% VAT.
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